Revstat Statistical Journal (Jun 2021)

Semiparametric Additive Beta Regression Models

  • Germán Ibacache-Pulgar ,
  • Jorge Figueroa-Zuñiga ,
  • Carolina Marchant

DOI
https://doi.org/10.57805/revstat.v19i2.342
Journal volume & issue
Vol. 19, no. 2

Abstract

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In this paper, we study a semiparametric additive beta regression model using a parameterization based on the mean and a dispersion parameter. This model is useful for situations where the response variable is continuous and restricted to the unit interval, in addition to being related to other variables through a semiparametric regression structure. First, we formulate the model and then estimation of its parameters is discussed. A back-fitting algorithm is derived to attain the maximum penalized likelihood estimates by using natural cubic smoothing splines. We provide closed-form expressions for the score function, Fisher information matrix and its inverse. Local influence methods are derived as diagnostic tools. Finally, a practical illustration based on real data is presented and discussed.

Keywords